Anatomical landmarks are a crucial prerequisite for many medical imaging tasks. Usually, the set of landmarks for a given task is predefined by experts. The landmark locations for a given image are then annotated manually or via machine learning methods trained on manual annotations. In this paper, in contrast, we present a method to automatically discover and localize anatomical landmarks in medical images. Specifically, we consider landmarks that attract the visual attention of humans, which we term visually salient landmarks. We illustrate the method for fetal neurosonographic images. First, full-length clinical fetal ultrasound scans are recorded with live sonographer gaze-tracking. Next, a convolutional neural network (CNN) is trained ...
Deep Learning (DL), enabled by convolutional neural network (CNN), is widely applied to automate ima...
In fetal neurosonography, aligning two-dimensional (2D) ultrasound scans to their corresponding...
While performing an ultrasound (US) scan, sonographers direct their gaze at regions of interest to v...
Current automated fetal ultrasound (US) analysis methods employ local descriptors and machine learn...
In this study, we propose a fast and accurate method to automatically localize anatomical landmarks ...
Image representations are commonly learned from class labels, which are a simplistic approximation o...
Obstetric ultrasound scanning is a safe and effective tool for the early detection of fetal abnormal...
One of the major challenges in anatomical landmark detection, based on deep neural networks, is the ...
For visual tasks like ultrasound (US) scanning, experts direct their gaze towards regions of task-re...
We present a novel automated approach for detection of standardized abdominal circumference (AC) pla...
Anatomical landmarks on 3-D human body scans play key roles in shape-essential applications, includi...
Fast and accurate anatomical landmark detection can benefit many medical image analysis methods. Her...
Anatomical landmarks on 3-D human body scans play key roles in shape-essential applications, includi...
We present a novel multi-task neural network called Temporal SonoEyeNet (TSEN) with a primary task t...
Anatomical landmark correspondences in medical images can provide additional guidance information fo...
Deep Learning (DL), enabled by convolutional neural network (CNN), is widely applied to automate ima...
In fetal neurosonography, aligning two-dimensional (2D) ultrasound scans to their corresponding...
While performing an ultrasound (US) scan, sonographers direct their gaze at regions of interest to v...
Current automated fetal ultrasound (US) analysis methods employ local descriptors and machine learn...
In this study, we propose a fast and accurate method to automatically localize anatomical landmarks ...
Image representations are commonly learned from class labels, which are a simplistic approximation o...
Obstetric ultrasound scanning is a safe and effective tool for the early detection of fetal abnormal...
One of the major challenges in anatomical landmark detection, based on deep neural networks, is the ...
For visual tasks like ultrasound (US) scanning, experts direct their gaze towards regions of task-re...
We present a novel automated approach for detection of standardized abdominal circumference (AC) pla...
Anatomical landmarks on 3-D human body scans play key roles in shape-essential applications, includi...
Fast and accurate anatomical landmark detection can benefit many medical image analysis methods. Her...
Anatomical landmarks on 3-D human body scans play key roles in shape-essential applications, includi...
We present a novel multi-task neural network called Temporal SonoEyeNet (TSEN) with a primary task t...
Anatomical landmark correspondences in medical images can provide additional guidance information fo...
Deep Learning (DL), enabled by convolutional neural network (CNN), is widely applied to automate ima...
In fetal neurosonography, aligning two-dimensional (2D) ultrasound scans to their corresponding...
While performing an ultrasound (US) scan, sonographers direct their gaze at regions of interest to v...